The present invention relates to support technology in setting an exercise menu to be continuously executed for functional recovery or capability improvement (hereinafter referred to as improvement) in rehabilitation or sports.
In recent years, standards for physical activity (Physical Activity: PA) directed to extend healthy life expectancy have been proposed, and the evaluation of the physical activity PA has become increasingly important (Non-Patent Literatures 1 and 2). In addition, the measurement of the physical activity PA by an acceleration sensor such as a wearable sensor device (WSD) has made remarkable progress, and usage scenes are expected to expand in the future, as a report (Non-Patent Literature 3) on the measurement of the physical activity PA by the wearable sensor device WSD for several thousands of healthy people is found, for example. On the other hand, in treatment of a patient with knee joint disease, emphasis has been on a patient-based assessment such as KOOS (Knee injury and Osteoarthritis Outcome Score), IKDC subjective score, Lysholm score.
In addition, Patent Literature 1 discloses an activity meter that calculates composite angular velocity, vertical component angular velocity, and horizontal component angular velocity from detected acceleration data in three axial directions, and, from these, performs calculation of activity intensity METs (Metabolic equivalents) and determination of a type of physical activity. Moreover, Patent Literature 2 discloses a rehabilitation support device that includes an active mass measurement unit that measures the active mass of a paralyzed-side upper limb on the basis of a detection signal from an acceleration sensor, and a display unit that displays an image showing the active mass of the paralyzed-side upper limb and an active mass target value, and, in a case in which an expected value of the activity mass in a predetermined time period is not expected to reach the active mass target value, causes the display unit to display the fact accordingly.
The patient-based assessment described above, in a case of enabling quantitative assessment of ADL (Activities of Daily Living: Activities of Daily Living Test) or a sports activity level by measuring the physical activity PA of a patient by using the wearable sensor device WSD, although being considered to be highly advantageous, has limitations in terms of quantitativeness, objectivity, and reproducibility, when it remains conventional.
In addition, Patent Literatures 1 and 2 do not disclose technology to support the setting of an exercise menu for functional recovery through rehabilitation or for improvement of sports ability, by use of quantitative and qualitative characteristics in each category classified according to physical activity intensity and between categories.
In view of the foregoing, the present invention proposes an exercise support apparatus, an exercise support method, an exercise support system, and a storage medium that provide support in setting a next exercise menu for improvement to a targeted body, based on prior body motion information on a subject detected by a motion sensor.
An exercise support apparatus according to the present invention includes an information processing unit that supports a setting of a next exercise menu for improvement to a targeted body, based on prior body motion information on a subject detected by a motion sensor, and the information processing unit includes a target information processing unit, a measurement information processing unit, and an output processing unit. The target information processing unit outputs distribution information on an amount of activity and a number of steps of at least one category obtained by classifying activity intensity that has been obtained from a target people group in advance, stored in a storage unit, and selected in advance, to an output unit. The measurement information processing unit calculates the amount of activity and the number of steps for the same category as a selected category, based on body motion information on the subject, and that stores a calculation result in a measurement data storage unit. The output processing unit outputs the amount of activity and the number of steps that are stored in the measurement data storage unit, to the output unit.
In addition, an exercise support system according to the present invention includes the exercise support apparatus, and the motion sensor that sends a detection result to the information processing unit.
Moreover, an exercise support method according to the present invention supports a setting of a next exercise menu for improvement to a targeted body, based on prior body motion information on a subject detected by a motion sensor, and includes a step of outputting distribution information on an amount of activity and a number of steps of at least one category obtained by classifying activity intensity that has been obtained from a target people group in advance, stored in a storage unit, and selected in advance, to an output unit, a step of calculating the amount of activity and the number of steps for a same category as a selected category, based on body motion information on the subject, and that stores a calculation result in a measurement data storage unit, and a step of outputting the amount of activity and the number of steps that are stored in the measurement data storage unit, to the output unit.
Furthermore, a non-transitory computer readable storage medium storing a program according to the present invention uses a computer to support a setting of a next exercise menu for improvement to a targeted body, based on prior body motion information on a subject detected by a motion sensor, and causes the computer to execute outputting distribution information on an amount of activity and a number of steps of at least one category obtained by classifying activity intensity that has been obtained from a target people group in advance, stored in a storage unit, and selected in advance, to an output unit, calculating the amount of activity and the number of steps for a same category as a selected category, based on body motion information on the subject, and that stores a calculation result in a measurement data storage unit, and outputting the amount of activity and the number of steps that are stored in the measurement data storage unit, to the output unit.
According to these inventions, the distribution information on the amount of activity and the number of steps of at least one category obtained by classifying activity intensity that has been obtained from a target people group in advance, stored in a storage unit, and selected in advance, is outputted to an output unit. In addition, the amount of activity and the number of steps for a same category as a selected category, based on body motion information on the subject is calculated and a calculation result is stored in a measurement data storage unit. Subsequently, the amount of activity and the number of steps of the subject that are stored in the measurement data storage unit are outputted to the output unit. Therefore, since it is possible to recognize the distribution information on the target people group, it becomes possible to provide suitable support in setting the next exercise menu for improvement to the targeted body, based on the prior body motion information on the subject detected by the motion sensor. In the above, the subject and the target people group are defined such that, in a case in which the subject is a patient with a disease of a leg, that is, a knee joint, for example, or a patient with sports injury, the target people group may be assumed to be a group of healthy people, and, in a case in which the subject is an athlete, the target group may be typically assumed to be a group of top athletes in the field.
Advantageous Effects of the Disclosure
According to the present invention, support in setting the next exercise menu for improvement to a target physical state is more accurately performed.
The motion sensor 2 is attached to a human body and detects a motion of the human body, especially the acceleration of the motion of a human body, and, in the present embodiment, a triaxial acceleration sensor 21 is employed and is integrally configured with a measurement processing unit 22. As an acceleration sensor, a capacitance type and a piezoelectric type are able to be employed, and various acceleration sensors based on other detection principles may be used. The motion sensor 2 includes an attachment tool such as a clip or a fastening tool that is not shown, and is used by being attached to a central part of the human body, preferably a suitable position around a waist, through such an attachment tool. The motion sensor 2 is attachable around a waist so that the triaxial acceleration sensor faces up and down, as well as forward and backward, and left and right to the human body, and detects each direction component from the acceleration sensor corresponding to each axis.
The motion sensor 2 includes a not-shown power switch, and is activated to perform a detection operation while the switch is on. In an embodiment of rehabilitation support (exercise support for rehabilitation) for knee joint disease to be described below, the sensor is activated for a preset predetermined period of time between waking and sleeping, for example, about 10 hours, and detects daily movements of the human body as well as rehabilitation movements to be described below. It is to be noted that the predetermined time may be set by specifying a start time and an end time or may also be a flexible setting of a time period between waking and sleeping, literally, for example. Alternatively, data may be collected for a longer period of time along with time information, and, when the data is captured, data for a required period of time may be selectively captured.
The configuration and function of the triaxial acceleration sensor 21 and the measurement processing unit 22 are able to employ the same technology as the technology disclosed in Patent Literature 1 as an example. Hereinafter, in a brief description, the measurement processing unit 22 includes a processor (a CPU), and, by executing a measurement program stored in a storage unit 23, functions as an activity intensity measurement unit 221, a step number measurement unit 222, and a clock unit 223 that clocks time or required time.
The activity intensity measurement unit 221 captures acceleration data detected by the triaxial acceleration sensor 21 at a predetermined period of about several tens of Hz, for example, and measures activity intensity from the captured time-series acceleration data. For example, synthetic acceleration S, vertical component acceleration Sv, and horizontal component acceleration Sh are calculated from the triaxial acceleration data, and, by using these as determination conditions, for example, the level of the synthetic acceleration S and the ratio of the component acceleration Sv and Sh, the activity intensity (METs: Metabolic equivalents) is calculated from the synthetic acceleration, and the type of physical activity such as life activity, exercise, or rest, for example, is also classified. In addition, the activity intensity measurement unit 221 calculates the activity intensity METs from the detected acceleration as data for each unit time (1 minute, for example).
The step number measurement unit 222 measures (counts) the number of times the detected acceleration of the vertical component exceeds a predetermined threshold value, and defines the number as the cumulative number of steps within a detection period.
The information processing apparatus 3 includes a control unit 31 configured by a processor (a CPU). The control unit 31 is connected to a display unit 32 that displays an image, an operation unit 33 that receives operating instructions from the outside, a measurement data storage unit 34, and a storage unit 35. It is to be noted that the operation unit 33 may be configured by a touch panel obtained by stacking a transparent pressure-sensitive panel element on the display unit 32.
The measurement data storage unit 34 is data measured by the motion sensor 2, and stores the data captured by the information processing apparatus 3 for each patient ID. The storage unit 35 has a healthy group data storage unit 351, a rehabilitation success case data storage unit 352, and a control program data storage unit 353. Healthy group data refers to activity content detected in the same period (10 hours between waking and sleeping in the above example) as a patient, and will be described in detail below. In addition, the storage unit 35 includes a work area (a main memory unit) that executes information processing, in addition to a memory area.
The control unit 31, by reading and executing a control program from the control program data storage unit 353 to the work area, functions as a measurement data capture unit 311, an activity amount processing unit 312, an image display processing unit 313, and an input processing unit 314 that processes reception of various types of information to be inputted through the operation unit 33 and capture to the storage unit.
The measurement data capture unit 311, according to measurement data capture instructions from the information processing apparatus 3, captures to the measurement data storage unit 34 in advance measurement data of the physical activity and the number of steps of a patient with knee joint disease that have been measured by the motion sensor 2 for a predetermined time of the previous time, for example.
The activity amount processing unit 312 divides (classifies) the captured measurement data of a patient into each category that is set in advance according to activity intensity, and performs processing to calculate an amount of activity Ex for each category.
The activity amount processing unit 312 calculates the amount of activity Ex by accumulating the activity intensity METs data corresponding to each category per unit time, for example, one minute. Moreover, the activity amount processing unit 312 calculates the amount of activity Ex for Long-bout MVPA for a separate evaluation. A calculation result is stored in the measurement data storage unit 34 when necessary.
Next, a physical activity experiment was conducted on a group of healthy subjects (a healthy group) and a group of patients (a patient group), and not only a quantitative analysis but also a qualitative analysis was conducted to the result. The analysis, as shown below, was conducted by use of (1) comparison between the patient group and the healthy group regarding the amount of activity Ex and the number of steps in each category of the activity intensity METs, and (2) Publicly known Student's t test and Pearson's correlation coefficient for the purpose of examining a relationship between the amount of activity Ex and the number of steps within a category. It is to be noted that, in the present analysis, a significance level at a P value of correlation evaluation was set at a general 5%.
The experimental result data shown in
In addition, from the detection result of a triaxial accelerometer of the activity meter applied to the present experiment, a value of Metabolic equivalents (METs) for one minute is extracted by use of the “Activity Meter Application” attached to the activity meter and used for PA evaluation, based on an algorithm or the like disclosed in Patent Literature 1 or a reference material (K Ohkawara, Y Oshima, Y Hikihara et al. Real-time estimation of daily physical activity intensity by a triaxial accelerometer and a gravity-removal classification algorithm. Br J Nutr 2011; 105: 1681-1691, and Y Oshima, K Kawaguchi, S Tanaka et al. Classifying household and locomotive activities using a triaxial accelerometer. Gait Posture 2010; 31: 370-374.) At the same time, information on the number of steps was also extracted.
The amount of activity for each person is added up for each category. In the drawing, an open triangle mark indicates a coordinate position of the amount of activity and the number of steps for each person in the group of healthy people (the healthy group), and a black circle mark indicates a coordinate position of the amount of activity and the number of steps for each person in the patient group. It is to be noted that the data in the present experiment includes no exercise according to the instructions of the exercise menu for both healthy people and patients. For the distribution in each drawing, r value indicates a correlation coefficient and, P value indicates a correlation value, and a straight line indicates a regression line of the healthy group.
Next,
Regarding the correlation between the amount of activity Ex and the number of steps, while SED and LPA in
Moreover, regarding Long-bout MVPA, as shown in
Next,
In other words, conditions of a category for each of the categories to be applicable as a tool for evaluating rehabilitation support and the effectiveness are preferably that the distribution of the healthy group and the distribution of the patient group are significantly separated (different), and that a correlation is observed in the distribution of the healthy group. A condition for the applicable category (a category to be selected for support) is that the amount of activity and the number of steps in the initial phase of rehabilitation in the patient and the distribution information on the healthy group that is the target of recovery have a significant difference. With use of the existence of such a significant difference from the healthy group, a measurement result position of a patient during rehabilitation on a coordinate system and the distribution of the healthy group as shown in
With effective support in such a gradual setting, it is possible to provide accurate exercise support that gradually approaches from the outside of the distribution of the healthy group toward the distribution and eventually leads into the distribution effectively, that is, to a smooth recovery. It is to be noted that the categories used for contrast may be all the categories, focusing on some significant differences or may be narrowed down to at least one or more predetermined categories, utilizing more significant differences.
Returning to
The image information on the patient and the healthy group may be displayed on an image of each coordinate system or may be superimposed and displayed on an image of a shared coordinate system. The image information of the amount of activity of the patient may display data for all categories or may be only the category corresponding to the category on a healthy group side. It is to be noted that, in an aspect of superimposing and displaying on an image of the same coordinate system, a display mark on a patient side is preferably displayed differently from a display mode on the healthy group side, in shape, size, blinking or no blinking, color, or the like, so as to be identifiable. In a case of being shared and displayed, the measurement data position of the patient with respect to the distribution of the healthy group is displayed so as to be relatively easily identified.
The rehabilitation success case data storage unit 352 stores at least one or more past successful cases in which knee joint disease was suitably recovered by rehabilitation, including gradual rehabilitation time points and the exercise menu that was set at each time point, as well as further the measurement data of the patient in each case. The input processing unit 314, among rehabilitation success case data, when necessary, extracts measurement data similar to the measurement data of a patient, and a similar successful case data at a rehabilitation time point, and causes the display unit 32 to display the data by the image display processing unit 313, automatically, or through the operation unit 33 to provide support of a setting of the exercise menu.
Herein, an example of rehabilitation improvement history of a patient will be illustrated in a sample graph of
In the present invention, although the group of healthy people being a target is set uniformly, the healthy people may be divided into age groups, gender, or the like, to create the healthy group data, and data for contrast that is closer to the attributes of the patient may be used. In addition, the present invention may include longitudinal evaluation of the process of treatment (rehabilitation) of a patient with knee joint disease from a postoperative period, and may also be applicable further to the evaluation and guidance of the effectiveness of treatment of sports injury, rehabilitation, and return to sports.
The present invention may provide the measurement processing unit 22 near the information processing apparatus 3, and, conversely, may provide the activity amount processing unit 312 near the motion sensor 2. In addition, the output of patient side data and the distribution information on the healthy group may be printed out by a printer, instead of the display unit 32 that shows an image.
Moreover, the setting of the exercise content for rehabilitation may be set to the same exercise content for one day or for several days, and the measurement data may be collectively captured and evaluated.
In addition, the communication between the motion sensor 2 on the patient side and the information processing unit 3 on a hospital side may use Internet environment between the home and the hospital, typically, such as a WAN, in addition to short-range communication.
In addition, in the present invention, data of a list of the exercise menu may be included in the storage unit 35 of the information processing apparatus 3. The exercise menu list is preferably classified corresponding to each category of activity intensity, for example, and preferably includes an exercise type, as well as exercise intensity and exercise duration. The exercise menu list is able to provide support in setting the exercise menu, for example, automatically or by receiving operation instructions from the operation unit 33 and displaying the list by the image display processing unit 313 at an appropriate position on the display unit 32 so as to be referable for each corresponding category, for example, as appropriate.
As described above, the exercise support apparatus according to the present invention includes an information processing unit that supports a setting of a next exercise menu for improvement to a targeted body, based on prior body motion information on a subject detected by a motion sensor, and the information processing unit includes the following target information processing unit, measurement information processing unit, and output processing unit. The target information processing unit outputs distribution information on an amount of activity and a number of steps of at least one category obtained by classifying activity intensity that has been obtained from the target people group in advance, stored in a storage unit, and selected in advance, to an output unit. The measurement information processing unit calculates the amount of activity and the number of steps for the same category as a selected category, based on body motion information on the subject, and that stores a calculation result in a measurement data storage unit. The output processing unit outputs the amount of activity and the number of steps that are stored in the measurement data storage unit, to the output unit.
In addition, the exercise support system according to the present invention preferably includes the exercise support apparatus, and the motion sensor that sends a detection result to the information processing unit.
In addition, the exercise support method according to the present invention preferably supports a setting of a next exercise menu for improvement to a targeted body, based on prior body motion information on a subject detected by a motion sensor, and preferably includes a step of outputting distribution information on an amount of activity and a number of steps of at least one category obtained by classifying activity intensity that has been obtained from a target people group in advance, stored in a storage unit, and selected in advance, to an output unit, a step of calculating the amount of activity and the number of steps for a same category as a selected category, based on body motion information on the subject, and that stores a calculation result in a measurement data storage unit, and a step of outputting the amount of activity and the number of steps that are stored in the measurement data storage unit, to the output unit.
In addition, the non-transitory computer readable storage medium storing the program according to the present invention preferably uses a computer to support a setting of a next exercise menu for improvement to a targeted body, based on prior body motion information on a subject detected by a motion sensor, the program preferably causing the computer to execute outputting distribution information on an amount of activity and a number of steps of at least one category obtained by classifying activity intensity that has been obtained from a target people group in advance, stored in a storage unit, and selected in advance, to an output unit, calculating the amount of activity and the number of steps for a same category as a selected category, based on body motion information on the subject, and that stores a calculation result in a measurement data storage unit, and outputting the amount of activity and the number of steps that are stored in the measurement data storage unit, to the output unit.
According to these inventions, the distribution information on the amount of activity and the number of steps of at least one category obtained by classifying activity intensity that has been obtained from a target people group in advance, stored in a storage unit, and selected in advance, is outputted to an output unit. In addition, the amount of activity and the number of steps for a same category as a selected category, based on body motion information on the subject is calculated and a calculation result is stored in a measurement data storage unit. Subsequently, the amount of activity and the number of steps of the subject that are stored in the measurement data storage unit are outputted to the output unit. Therefore, since it is possible to recognize the distribution information on the target people group, it becomes possible to provide suitable support in setting the next exercise menu for improvement to the targeted body, based on the prior body motion information on the subject detected by the motion sensor. In the above, the subject and the target people group are defined such that, in a case in which the subject is a patient with a disease of a leg, that is, a knee joint, for example, or a patient with sports injury, the target people group may be assumed to be a group of healthy people, and, in a case in which the subject is an athlete, the target group may be typically assumed to be a group of top athletes in the field.
In addition, the output unit is preferably a display unit that displays an image. According to this configuration, the measurement data of the subject and the distribution information on the target people group are displayed in the image.
In addition, the output processing unit preferably displays the amount of activity and the number of steps that have been calculated by the measurement information processing unit, on a coordinate system of the selected each category. According to this configuration, since both pieces of information are displayed on a similar coordinate system, identification becomes easy.
In addition, the present invention preferably superimposes and displays the amount of activity and the number of steps that have been calculated by the measurement information processing unit so as to be identifiable, on the shared coordinate system of each category displayed on the display unit. According to this configuration, since both pieces of information are superimposed and displayed on the shared coordinate system, identification of the both becomes easier and more accurate.
In addition, the selected category is preferably a category with a significant difference between the amount of activity and the number of steps of the subject in an initial period of support and the distribution information on the target people group. According to this configuration, since a difference is able to be more recognized in the early stage of support, for example, at the beginning of rehabilitation, effective support is able to be provided, for example, when setting an exercise menu for rehabilitation.
In addition, the selected category is preferably a category in which the distribution information on the target people group shows relatively high correlation. According to this configuration, it is possible to support the subject to improve more accurately to the physical condition of the target person.
In addition, the detection of the body motion information is preferably performed at a preset time between waking and sleeping. According to this configuration, the overall exercise condition also including daily life activities is able to be grasped, and a setting of the next exercise menu is able to be provided.
In addition, the distribution information is preferably at least one of all values of each of the amount of activity and the number of steps of the target people group, and a regression line to distribution of a value of each of the amount of activity and the number of steps of the target people group. According to this configuration, it is possible to output information on the target people group in an appropriate manner, which facilitates recognition of a difference.
In the present disclosure, the subject is preferably a patient with knee joint disease, and the target people group is preferably a healthy people group. According to this configuration, effective support is able to be provided for a setting of the exercise menu for rehabilitation to the patient with knee joint disease.
Number | Date | Country | Kind |
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2021-013069 | Jan 2021 | JP | national |
Filing Document | Filing Date | Country | Kind |
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PCT/JP2021/045783 | 12/13/2021 | WO |